基于reram的神经形态计算系统的热感知优化

Majed Valad Beigi, G. Memik
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引用次数: 30

摘要

基于reram的系统由于其高速度和低设计成本而成为神经形态计算的有吸引力的实现方案。在这项工作中,我们研究了温度对基于reram的神经形态架构的影响,并展示了温度变化如何对计算精度产生负面影响。我们首先根据温度对ReRAM交叉栏单元进行分类,并确定对网络输出有较大影响的有效神经网络权重。然后,我们提出了一种新的温度感知训练和映射方案,以防止有效权值被映射到热单元,以恢复系统的精度。对两层神经网络的评估结果表明,该方案可将系统准确率提高39.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Thermal-aware Optimizations of ReRAM-based Neuromorphic Computing Systems
ReRAM-based systems are attractive implementation alternatives for neuromorphic computing because of their high speed and low design cost. In this work, we investigate the impact of temperature on the ReRAM-based neuromorphic architectures and show how varying temperatures have a negative impact on the computation accuracy. We first classify ReRAM crossbar cells based on their temperature and identify effective neural network weights that have large impacts on network outputs. Then, we propose a novel temperature-aware training and mapping scheme to prevent the effective weights from being mapped to hot cells to restore the system accuracy. Evaluation results for a two-layer neural network show that our scheme can improve the system accuracy by up to 39.2%.
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